| Literature DB >> 21481260 |
Martin R White1, Isabel G Jacobson, Besa Smith, Timothy S Wells, Gary D Gackstetter, Edward J Boyko, Tyler C Smith.
Abstract
BACKGROUND: Complementary and Alternative Medicine use and how it impacts health care utilization in the United States Military is not well documented. Using data from the Millennium Cohort Study we describe the characteristics of CAM users in a large military population and document their health care needs over a 12-month period. The aim of this study was to determine if CAM users are requiring more physician-based medical services than users of conventional medicine.Entities:
Mesh:
Year: 2011 PMID: 21481260 PMCID: PMC3083384 DOI: 10.1186/1472-6882-11-27
Source DB: PubMed Journal: BMC Complement Altern Med ISSN: 1472-6882 Impact factor: 3.659
Demographic and military characteristics of 2004-2006 active-duty Millennium Cohort participants by complementary and alternative medicine use (N = 44287)
| No CAM use | |||
|---|---|---|---|
| Characteristic | |||
| Sex | ‡ | ‡ | |
| Male | 20533 (65.3) | 7786 (24.8) | 7452 (23.7) |
| Female | 6449 (50.2) | 4931 (38.4) | 4544 (35.4) |
| Birth year | ‡ | ‡ | |
| Pre-1960 | 2587 (63.9) | 970 (23.9) | 1011 (25.0) |
| 1960-1969 | 7915 (64.2) | 3114 (25.2) | 2943 (23.9) |
| 1970-1979 | 7823 (60.5) | 3790 (29.3) | 3526 (27.3) |
| 1980 and later | 8657 (57.8) | 4843 (32.3) | 4516 (30.2) |
| Race/ethnicity | |||
| White, non-Hispanic | 18065 (60.8) | 8517 (28.7) | 8100 (27.3) |
| Black, Non-Hispanic | 3735 (60.7) | 1787 (29.1) | 1668 (27.1) |
| Other | 5177 (61.5) | 2412 (28.7) | 2227 (26.5) |
| Missing data | 5 (0.0) | 1 (0.0) | 1 (0.0) |
| Education level | ‡ | ‡ | |
| High school diploma or less | 17841 (60.4) | 8685 (29.4) | 8317 (28.2) |
| Some college | 3769 (61.6) | 1633 (26.7) | 1605 (26.2) |
| Bachelor's degree | 2871 (61.9) | 1311 (28.3) | 1155 (24.9) |
| Graduate school | 2498 (62.7) | 1086 (27.3) | 918 (23.1) |
| Missing data | 3 (0.0) | 2 (0.0) | 1 (0.0) |
| Marital status | ‡ | ‡ | |
| Never married | 9693 (57.0) | 5542 (32.6) | 5215 (30.7) |
| Married | 16076 (64.1) | 6451 (25.7) | 6095 (24.3) |
| Divorced | 1213 (55.2) | 724 (32.9) | 686 (31.2) |
| Military pay grade | ‡ | ||
| Officer | 3957 (63.1) | 1743 (27.8) | 1386 (22.1) |
| Enlisted | 23025 (60.6) | 10974 (28.9) | 10610 (27.9) |
| Service branch | ‡ | ‡ | |
| Army | 10368 (59.8) | 5056 (29.2) | 4910 (28.3) |
| Navy and Coast Guard | 5877 (59.1) | 2987 (30.1) | 2910 (29.3) |
| Marine Corps | 1733 (59.9) | 918 (31.7) | 745 (25.7) |
| Air Force | 9004 (63.7) | 3756 (26.6) | 3431 (24.3) |
| Military occupation | ‡ | ‡ | |
| Combat specialists | 4955 (62.5) | 2186 (27.6) | 1992 (25.1) |
| Electronic equip. repair | 2802 (64.8) | 1120 (25.9) | 1057 (24.4) |
| Comm/intelligence | 2531 (58.8) | 1346 (31.3) | 1226 (28.5) |
| Health care | 2326 (52.0) | 1573 (35.2) | 1573 (35.2) |
| Other technical/allied | 824 (59.5) | 405 (29.3) | 392 (28.3) |
| Functional support/admin | 4915 (60.0) | 2380 (29.1) | 2266 (27.7) |
| Elec/mech equip. repair | 4685 (64.8) | 1829 (25.3) | 1765 (24.4) |
| Craft workers | 766 (62.8) | 340 (27.9) | 303 (24.9) |
| Service and supply | 2490 (60.9) | 1194 (29.2) | 1123 (27.5) |
| Students, trainees/other | 687 (59.7) | 344 (29.9) | 299 (26.0) |
| Body mass index | ‡ | ‡ | |
| Underweight | 191 (57.7) | 96 (29.0) | 106 (32.0) |
| Healthy weight | 9298 (58.5) | 4922 (31.0) | 4616 (29.0) |
| Overweight | 12417 (62.0) | 5531 (27.6) | 5236 (26.2) |
| Obese | 3298 (61.4) | 1502 (27.9) | 1454 (27.1) |
| Missing data | 1778 (6.6) | 666 (5.2) | 584 (4.9) |
| Smoking status | ‡ | ‡ | |
| Nonsmoker | 14286 (61.5) | 6570 (28.3) | 6099 (26.2) |
| Past smoker | 3465 (61.6) | 1504 (26.7) | 1540 (27.4) |
| Current smoker | 8071 (58.8) | 4238 (30.9) | 3983(29.0) |
| Missing data | 1160 (4.3) | 405 (3.2) | 374 (3.1) |
| Alcohol-related problems§ | ‡ | ‡ | |
| No | 24567 (61.7) | 10490 (26.3) | 10529 (26.4) |
| Yes | 2415 (54.1) | 1472 (33.0) | 1467 (32.9) |
| Health conditions|| | ‡ | ‡ | |
| No | 16784 (60.9) | 6332 (23.0) | 5810 (21.1) |
| Yes | 10198 (60.9) | 6385 (38.1) | 6186 (37.0) |
| Health symptoms|| | ‡ | ‡ | |
| No | 12345 (60.9) | 3696 (18.2) | 3517 (17.3) |
| Yes | 14637 (61.0) | 9021 (37.6) | 8479 (35.3) |
| Mean (SD) | Mean (SD) | Mean (SD) | |
| Mental Component Summary ¶ | 51.7 (9.4) | 50.3 (10.2) | 49.7 (10.6) |
| Physical Component Summary ¶ | 53.8 (7.2) | 51.1 (8.8) | 51.6 (8.7) |
*Practitioner-assisted complementary and alternative medicine (CAM) therapies include acupuncture, biofeedback, chiropractic care, energy healing, folk remedies, hypnosis, and massage.
*†Self-administered CAM therapies include herbal therapy, high-dose megavitamin therapy, homeopathy, relaxation, and spiritual healing.
†Practitioner-assisted and self-administered CAM therapy categories are not mutually exclusive.
‡p < 0.05.
§Alcohol-related problems were defined by endorsement of any of the following that occurred more than once during the past year: (a) you drank alcohol even after a doctor suggested stopping due to health problems; (b) you drank alcohol, were high from alcohol, or were hung over while you were working, going to school, or taking care of children or other responsibilities; (c) you missed or were late for work, school, or other activities because you were drinking or hung over; (d) you had a problem getting along with people while you were drinking; and (e) you drove a car after having several drinks or after drinking too much.
||No none reported, Yes one or more reported.
¶Mental and Physical Component Summary scores have been transformed using norm-based algorithms (mean = 50, standard deviation = 10).
First hospitalization rates and adjusted odds ratios for active-duty military personnel over a 1-year period enrolled in the Millennium Cohort Study 2004-2006 (N = 42896)*
| Hospitalization rate per 1,000 | Adjusted | 95% CI† | |
|---|---|---|---|
| Characteristic | ( | OR† | |
| Sex | |||
| Male | 28.3 (890) | 1.00 | |
| Female | 48.8 (559) | 1.93 | 1.69-2.19 |
| Birth year | |||
| Pre-1960 | 44.2 (179) | 1.00 | |
| 1960-1969 | 37.2 (457) | 0.73 | 0.60-0.90 |
| 1970-1979 | 29.9 (374) | 0.47 | 0.38-0.59 |
| 1980 and later | 31.1 (439) | 0.46 | 0.36-0.60 |
| Race/ethnicity | |||
| White, non-Hispanic | 33.2 (955) | 1.00 | |
| Black, Non-Hispanic | 34.9 (208) | 1.06 | 0.90-1.24 |
| Other | 35.2 (286) | 1.10 | 0.95-1.26 |
| Education level | |||
| High school diploma or less | 34.9 (989) | 1.00 | |
| Some college | 35.0 (212) | 0.75 | 0.62-0.89 |
| Bachelor's degree | 27.6 (126) | 0.65 | 0.51-0.82 |
| Graduate school | 30.9 (122) | 0.62 | 0.44-0.85 |
| Marital status | |||
| Never married | 31.6 (514) | 1.00 | |
| Married | 34.3 (839) | 1.03 | 0.89-1.19 |
| Divorced, widowed, separated | 44.3 (96) | 1.00 | 0.7-1.29 |
| Military pay grade | |||
| Enlisted | 34.6 (1,270) | 1.00 | |
| Officer | 28.8 (179) | 1.08 | 0.82-1.43 |
| Service branch | |||
| Army | 41.4 (697) | 1.00 | |
| Navy and Coast Guard | 31.6 (302) | 0.69 | 0.59-0.80 |
| Marine Corps | 18.6 (53) | 0.49 | 0.35-0.66 |
| Air Force | 29.2 (402) | 0.68 | 0.59-0.78 |
| Military occupation | |||
| Combat specialists | 32.1 (251) | 1.00 | |
| Electronic equipment repair | 28.8 (122) | 0.89 | 0.70-1.12 |
| Communications/intelligence | 33.2 (138) | 0.90 | 0.72-1.13 |
| Health care | 45.2 (190) | 1.09 | 0.88-1.35 |
| Other technical and allied | 33.8 (45) | 0.99 | 0.70-1.37 |
| Functional support and admin | 34.6 (272) | 0.84 | 0.69-1.02 |
| Electrical/mechanical equip. repair | 33.0 (234) | 1.02 | 0.83-1.24 |
| Craft workers | 18.3 (22) | 0.54 | 0.32-0.84 |
| Service and supply | 38.2 (148) | 1.01 | 0.81-1.26 |
| Students, trainees, and other | 24.2 (27) | 0.91 | 0.59-1.36 |
| Body mass index (BMI) | |||
| Underweight | 56.5 (17) | 1.00 | |
| Healthy weight | 31.8 (483) | 0.70 | 0.42-1.26 |
| Overweight | 32.8 (641) | 0.78 | 0.47-1.42 |
| Obese | 42.7 (224) | 1.00 | 0.59-1.83 |
| Missing data | (84) | ||
| Smoking status | |||
| Nonsmoker | 31.3 (704) | 1.00 | |
| Past smoker | 36.5 (201) | 1.09 | 0.92-1.29 |
| Current smoker | 36.7 (488) | 1.20 | 1.05-1.36 |
| Missing data | (56) | ||
| Alcohol-related problems‡ | |||
| No | 33.8 (1,302) | 1.00 | |
| Yes | 33.7 (147) | 1.02 | 0.84-1.24 |
*Excludes hospitalizations for complications of pregnancy, childbirth, and the puerperium (ICD-9-CM 630-676).
†ORs and associated confidence intervals from multiple logistic regression were adjusted for sex, age, education, marital status, race/ethnicity, pay grade, branch of service, occupation, BMI, smoking status, and problem drinking. CIs that exclude 1.00 were significant at the p < 0.05 level.
‡Alcohol-related problems were defined by endorsement of any of the following that occurred more than once during the past year: (a) you drank alcohol even after a doctor suggested stopping due to health problems; (b) you drank alcohol, were high from alcohol, or were hung over while you were working, going to school, or taking care of children or other responsibilities; (c) you missed or were late for work, school, or other activities because you were drinking or hung over; (d) you had a problem getting along with people while you were drinking; (e) you drove a car after having several drinks or after drinking too much. No = none reported, Yes = one or more reported.
First hospitalization rates by CAM use, unadjusted and adjusted odds ratios for active-duty military personnel
| Hospitalization Rate per 1,000 | Unadjusted | Adjusted | |||
|---|---|---|---|---|---|
| CAM use | ( | OR | 95% CI | ||
| Non-CAM Use ( | 30.5 (800) | 1.00 | 1.00 | ||
| CAM Use ( | 39.0 (649) | 1.29 | 1.16-1.43 | 1.04 | 0.93-1.17 |
| Provider-admin only ( | 38.4 (196) | 1.27 | 1.08-1.49 | 1.06 | 0.89-1.26 |
| Self-admin only ( | 32.9 (146) | 1.08 | 0.90-1.29 | 0.89 | 0.73-1.07 |
| Both ( | 43.3 (307) | 1.44 | 1.26-1.64 | 1.13 | 0.97-1.30 |
A 1-year follow-up period from the time of enrollment into the Millennium Cohort Study 2004-2006 (N = 42896)*
*Excludes hospitalizations for complications of pregnancy, childbirth, and the puerperium (ICD-9-CM 630-676).
†ORs and associated confidence intervals from multiple logistic regression were adjusted for sex, age, education, marital status, race/ethnicity, pay grade, branch of service, occupation, body mass index, smoking status, problem drinking, and differences in comorbidity using propensity scores. CIs that exclude 1.00 were significant at the p < 0.05 level.
Figure 1Adjusted odds ratios and 95% confidence intervals for odds of a hospitalization visit for illnesses by CAM use versus non-CAM use, adjusted for sex, age, education, marital status, race/ethnicity, pay grade, branch of service, and occupation.
Figure 2Adjusted odds ratios and 95% confidence intervals for odds of an outpatient visit for illnesses by CAM use versus non-CAM use, adjusted for sex, age, education, marital status, race/ethnicity, pay grade, branch of service, and occupation.